CVMLJul 4, 2022

BiTAT: Neural Network Binarization with Task-dependent Aggregated Transformation

arXiv:2207.01394v11 citationsh-index: 44
Originality Incremental advance
AI Analysis

This addresses the problem of deploying efficient neural networks on edge devices by improving extreme quantization methods, though it appears incremental as it builds on existing quantization-aware training approaches.

The paper tackles severe performance degeneration in extreme quantization (1-bit weights/activations) of compact neural networks like MobileNets by proposing a novel Quantization-Aware Training method that focuses on inter-weight dependencies, achieving preservation of full-precision model performance on CIFAR-100 and alleviating degeneration on ImageNet.

Neural network quantization aims to transform high-precision weights and activations of a given neural network into low-precision weights/activations for reduced memory usage and computation, while preserving the performance of the original model. However, extreme quantization (1-bit weight/1-bit activations) of compactly-designed backbone architectures (e.g., MobileNets) often used for edge-device deployments results in severe performance degeneration. This paper proposes a novel Quantization-Aware Training (QAT) method that can effectively alleviate performance degeneration even with extreme quantization by focusing on the inter-weight dependencies, between the weights within each layer and across consecutive layers. To minimize the quantization impact of each weight on others, we perform an orthonormal transformation of the weights at each layer by training an input-dependent correlation matrix and importance vector, such that each weight is disentangled from the others. Then, we quantize the weights based on their importance to minimize the loss of the information from the original weights/activations. We further perform progressive layer-wise quantization from the bottom layer to the top, so that quantization at each layer reflects the quantized distributions of weights and activations at previous layers. We validate the effectiveness of our method on various benchmark datasets against strong neural quantization baselines, demonstrating that it alleviates the performance degeneration on ImageNet and successfully preserves the full-precision model performance on CIFAR-100 with compact backbone networks.

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